Setting the stage for the machine intelligence era in marine science

Author:

Beyan Cigdem1ORCID,Browman Howard I2ORCID

Affiliation:

1. Pattern Analysis and Computer Vision, Istituto Italiano di Tecnologia, Via Enrico Melen 83, Genova 16152, Italy

2. Institute of Marine Research, Ecosystem Acoustics Group, Austevoll Research Station, Sauganeset 16, Storebø N-5392, Norway

Abstract

Abstract Machine learning, a subfield of artificial intelligence, offers various methods that can be applied in marine science. It supports data-driven learning, which can result in automated decision making of de novo data. It has significant advantages compared with manual analyses that are labour intensive and require considerable time. Machine learning approaches have great potential to improve the quality and extent of marine research by identifying latent patterns and hidden trends, particularly in large datasets that are intractable using other approaches. New sensor technology supports collection of large amounts of data from the marine environment. The rapidly developing machine learning subfield known as deep learning—which applies algorithms (artificial neural networks) inspired by the structure and function of the brain—is able to solve very complex problems by processing big datasets in a short time, sometimes achieving better performance than human experts. Given the opportunities that machine learning can provide, its integration into marine science and marine resource management is inevitable. The purpose of this themed set of articles is to provide as wide a selection as possible of case studies that demonstrate the applications, utility, and promise of machine learning in marine science. We also provide a forward-look by envisioning a marine science of the future into which machine learning has been fully incorporated.

Funder

Institute of Marine Research

Publisher

Oxford University Press (OUP)

Subject

Ecology,Aquatic Science,Ecology, Evolution, Behavior and Systematics,Oceanography

Reference74 articles.

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